An Offline Learning Approach to Propagator Models

43 Pages Posted: 26 Sep 2023

See all articles by Eyal Neuman

Eyal Neuman

Imperial College London - Department of Mathematics

Wolfgang Stockinger

Imperial College London - Department of Mathematics

Yufei Zhang

Imperial College London - Department of Mathematics

Date Written: September 6, 2023

Abstract

We consider an offline learning problem for an agent who first estimates an unknown price impact kernel from a static dataset, and then designs strategies to liquidate a risky asset while creating transient price impact. We propose a novel approach for a nonparametric estimation of the propagator from a dataset containing correlated price trajectories, trading signals and metaorders. We quantify the accuracy of the estimated propagator using a metric which depends explicitly on the dataset. We show that a trader who tries to minimise her execution costs by using a greedy strategy purely based on the estimated propagator will encounter suboptimality due to so-called spurious correlation between the trading strategy and the estimator and due to intrinsic uncertainty resulting from a biased cost functional. By adopting an offline reinforcement learning approach, we introduce a pessimistic loss functional taking the uncertainty of the estimated propagator into account, with an optimiser which eliminates the spurious correlation, and derive an asymptotically optimal bound on the execution costs even without precise information on the true propagator. Numerical experiments are included to demonstrate the effectiveness of the proposed propagator estimator and the pessimistic trading strategy.

Keywords: optimal portfolio liquidation, price impact, propagator models, predictive signals, Volterra stochastic control, offline reinforcement learning, nonparametric estimation, pessimistic principle, regret analysis

JEL Classification: C02, C61, G11

Suggested Citation

Neuman, Eyal and Stockinger, Wolfgang and Zhang, Yufei, An Offline Learning Approach to Propagator Models (September 6, 2023). Available at SSRN: https://ssrn.com/abstract=4564225 or http://dx.doi.org/10.2139/ssrn.4564225

Eyal Neuman (Contact Author)

Imperial College London - Department of Mathematics ( email )

South Kensington Campus
Imperial College
LONDON, SW7 2AZ
United Kingdom

Wolfgang Stockinger

Imperial College London - Department of Mathematics

Yufei Zhang

Imperial College London - Department of Mathematics ( email )

South Kensington Campus
Imperial College
LONDON, SW7 2AZ
United Kingdom

HOME PAGE: http://https://yufei-zhang.github.io/

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